Technical Field
[0001] The present invention relates to a magnetic resonance imaging (MRI) technique. More
particularly, it relates to a technique for controlling contrast of an image after
reconstruction.
Background Art
[0002] A magnetic resonance imaging (MRI) apparatus is a medical-use diagnostic imaging
apparatus which applies a radio frequency magnetic field and a magnetic field gradient
to a subject placed in a static magnetic field, measures a signal caused by nuclear
magnetic resonance being generated from the subject, and creates an image. Generally,
in the MRI apparatus, a slice magnetic field gradient identifying an imaging plane
is applied, and simultaneously an excitation pulse (radio frequency magnetic field
pulse) is provided for exciting magnetization within the plane. This allows acquisition
of a nuclear magnetic resonance signal (echo) that is generated at the stage of convergence
of the excited magnetization. On this occasion, in order to provide the magnetization
with positional information, a phase encoding magnetic field gradient and a readout
magnetic field gradient being perpendicular to each other within the imaging plane,
are applied during the period from the excitation until obtaining the echo. Then,
the echoes being measured are placed on the k-space where the lateral axis corresponds
to
kx and the longitudinal axis corresponds to
ky, and an image is reconstructed by the inverse Fourier transform.
[0003] A pixel value of the reconstructed image corresponds to a complex number including
magnitude (absolute value) and argument (phase). The absolute value and the argument
are determined by imaging parameters such as a type of imaging sequence, a pixel size,
and a repetition time; magnetization density in the subject; relaxation times (T1,
T2); a spatial distribution of resonance frequencies, and the like.
[0004] In general diagnosis, a grayscale picture (absolute value image) is used, assuming
the absolute value as a gray level. The absolute value image excels in visualizing
a structure of a region of interest, and typically, a density weighted image, T1 and
T2 weighted image, a diffusion weighted image, and an angiogram, are examples of this
kind of absolute value image. On the other hand, a phase difference occurs because
tissues have various resonance frequencies, respectively. Therefore, in some cases,
a grayscale picture (phase image) assuming the argument (phase) as a gray level is
used so as to visualize this phase difference. In particular, a high-field MRI apparatus
with at least 3 T (tesla) allows visualization of fine differences in frequencies
with respect to each tissue.
[0005] As thus described, it is general that either of the following information items is
used for an image; the absolute value or the argument. There is also known a method
which combines the absolute value and the phase to visualize brain veins with high
contrast (e.g., see Patent Document 1). This method transforms the argument of each
pixel into a phase image with a value range [-n, n], and further creates a phase mask
with the value range being transformed to [0, 1]. Then, the phase mask is multiplied
by itself
q times (
q ≥ 1) and then a multiplication product of the phase mask and the absolute value of
the same pixel is obtained. A value of
q is determined so that CNR (contrast to noise) is maximized. According to the processes
above, a difference between tissues caused by the phase difference is enhanced, and
a high contrast image can be obtained.
[0006] By way of example, in a tomographic view of the brain, in general, there is a tendency
that the phase of the cerebral parenchyma is positive and the phase of veins is small
(negative) relative to the cerebral parenchyma. In this connection, all the positive
phase is transformed to unity, and all the negative phase is transformed to [0, 1],
thereby creating the phase mask. The phase mask created as described above is multiplied
against the absolute value image,
q number of times, thereby reducing the intensity of the veins, and then it is possible
to obtain an image where the veins are enhanced.
Prior Art Document
Patent Document
Disclosure of Invention
Problem to be solved by the Invention
[0008] As discussed above, the phase of each pixel of a reconstructed image is significant
information which allows visualization of a difference between tissues. Therefore,
as disclosed in the patent document 1, with the use of the phase information, it is
possible to show a particular tissue with enhanced contrast. Here, the phase corresponds
to an angle of a rotating magnetization vector, and it is susceptible not only to
a difference in resonance frequencies between tissues, but also to static magnetic
field strength and echo time (TE) being an imaging parameter. The method disclosed
in the Patent Document 1 does not handle the phase information quantitatively, and
therefore, failing to eliminate the effect of such imaging conditions. Therefore,
the method of the Patent Document 1 fails to compare images subjected to the contrast
control according to this method, if they are taken with various static magnetic field
strengths, and/or taken with various TEs, and the phase information is not fully exploited.
[0009] The present invention has been made in view of the situation above, and an object
of the present invention is to provide an image processing technique which allows
utilization of the phase information quantitatively and effectively, in a contrast
control as a post-processing of the image reconstruction, thereby enabling various
contrast control.
Means to solve the Problem
[0010] The present invention subjects each pixel value of a complex image obtained by MRI,
to a transformation process according to a complex operation, thereby generating an
image with desired contrast. This transformation includes a process to increase or
decrease by a constant amount a phase (argument) of a pixel value of each pixel; and
a process to multiply by a constant the phase (argument) of the pixel value of each
pixel, and accordingly, implements each of the following controls quantitatively,
a control of intensity and a control of phase enhancement degree (a degree of phase
enhancement).
[0011] Specifically, a magnetic resonance imaging apparatus is provided, including an imaging
unit for applying a radio frequency magnetic field and a magnetic field gradient to
a subject placed in a static magnetic field, and detecting a nuclear magnetic resonance
signal generated from the subject as a complex signal, a control unit for controlling
an operation of the imaging unit, a computing unit for carrying out an operation on
the complex signal and generating an image, and a display unit for displaying the
image being generated, the computing unit being provided with an image reconstruction
unit for reconstructing from the complex signal, a complex image having a pixel value
each being a complex number, and an image transformation unit for transforming the
pixel value of each pixel in the complex image according to a complex operation which
carries out at least one of rotation and projection within a complex plane, so as
to obtain an image with desired contrast, and generating an image where the pixel
value after being transformed is set as the pixel value of each pixel.
[0012] In addition, the image transformation unit may be provided with an intensity enhancing
unit for performing the transformation so that the intensity of a representative pixel
being typical in a region of interest becomes a desired intensity value. Specifically,
the intensity enhancing unit for projecting each of the pixel value onto a second
line, passing through the origin at a predetermined first angle with respect to a
first line, connecting a point of the pixel value in a region of interest on the complex
plane with an origin of the complex plane.
[0013] In addition, the image transformation unit may be provided with a phase enhancing
unit for performing the transformation prior to executing the intensity enhancing
unit, so that a phase difference from the representative pixel is increased by a predetermined
multiplication factor. Specifically, the image transformation unit may be provided
with the phase enhancing unit which multiplies the argument of each pixel value on
the complex plane, by a predetermined real number.
[0014] The image transformation unit may further be provided with an argument transformation
unit for performing an argument transformation process which transforms the argument
of each pixel value in the complex image so that the intensity in the region of interest
becomes a desired intensity value, and a difference from the argument in the region
of interest is increased by a predetermined multiplication factor w, and an image
generation unit for setting a real part of the pixel value of each pixel after the
argument transformation process, to be a new pixel value of each pixel.
[0015] In addition, there is provided an image processing method according to the computing
unit in a magnetic resonance imaging apparatus including an imaging unit for applying
a radio frequency magnetic field and a magnetic field gradient to a subject placed
in a static magnetic field and detecting a nuclear magnetic resonance signal generated
from the subject as a complex signal, a control unit for controlling an operation
of the imaging unit, the computing unit for carrying out an operation on the complex
signal to generate an image, and a display unit for displaying the image being generated,
the image processing method being provided with an image reconstruction step of reconstructing
from the complex signal, a complex image with each pixel value being a complex number,
and an image transformation step of transforming the pixel value of each pixel in
the complex image by a complex operation which executes at least one of rotation and
projection in the complex plane so that an image with desired contrast is obtained,
and generating an image setting the pixel value after being transformed as the pixel
value of each pixel.
Effect of the Invention
[0016] According to the present invention, in the contrast control as a post-processing
of the image reconstruction, it is possible to utilize the phase information quantitatively
and effectively, accommodating various contrast control.
Brief Description of Drawings
[0017]
FIG. 1 is a block diagram showing a schematic configuration of an MRI apparatus according
to an embodiment of the present invention.
FIG. 2 is a functional block diagram of a computer according to an embodiment of the
present invention.
FIG. 3 is a flowchart of an imaging process according to an embodiment of the present
invention.
FIG. 4 is a pulse sequence diagram of an RF-spoiled GRASS sequence diagram.
FIG. 5A is a flowchart of the image transformation process according to an embodiment
of the present invention.
FIG. 5B illustrates influence on the complex plane, the influence exerted on the pixel
value by the image transformation process according to an embodiment of the present
invention.
FIG. 5C illustrates influence on the complex plane, the influence exerted on the pixel
value by the image transformation process according to an embodiment of the present
invention.
FIG. 5D illustrates influence on the complex plane, the influence exerted on the pixel
value by the image transformation process according to an embodiment of the present
invention.
FIG. 5E illustrates influence on the complex plane, the influence exerted on the pixel
value by the image transformation process according to an embodiment of the present
invention.
FIG. 5F illustrates influence on the complex plane, the influence exerted on the pixel
value by the image transformation process according to an embodiment of the present
invention.
FIG. 5G illustrates influence on the complex plane, the influence exerted on the pixel
value by the image transformation process according to an embodiment of the present
invention.
FIG. 6A is a flowchart of a modified example of the image transformation process according
to an embodiment of the present invention.
FIG. 6B illustrates influence on the complex plane, the influence exerted on the pixel
value by the modified example of the image transformation process according to an
embodiment of the present invention.
FIG. 6C illustrates influence on the complex plane, the influence exerted on the pixel
value by the modified example of the image transformation process according to an
embodiment of the present invention.
FIG. 6D illustrates influence on the complex plane, the influence exerted on the pixel
value by the modified example of the image transformation process according to an
embodiment of the present invention.
FIG. 6E illustrates influence on the complex plane, the influence exerted on the pixel
value by the modified example of the image transformation process according to an
embodiment of the present invention.
FIG. 6F illustrate influence on the complex plane, the influence exerted on the pixel
value by the modified example of the image transformation process according to an
embodiment of the present invention;
FIG. 7A illustrates one example of an image obtained after subjected to the image
transformation process according to an embodiment of the present invention.
FIG. 7B illustrates an intensity profile of the image shown in FIG. 7A.
FIG. 8A illustrates one example of an image obtained after subjected to the image
transformation process according to an embodiment of the present invention.
FIG. 8B illustrates an intensity profile of the image shown in FIG. 8A.
FIG. 9A illustrates examples of the image obtained after subjected to the image transformation
process according to an embodiment of the present invention.
FIG. 9B illustrates examples of the image obtained after subjected to the image transformation
process according to an embodiment of the present invention.
FIG. 10A illustrates examples of the image obtained after subjected to an alternative
example of the image transformation process according to an embodiment of the present
invention.
FIG. 10B illustrates examples of the image obtained after subjected to an alternative
example of the image transformation process according to an embodiment of the present
invention.
Best Mode for Carrying Out the Invention
[0018] Hereinafter, an explanation will be made as to an embodiment to which the present
invention is applied. Hereinafter, in the entire drawings for explaining the embodiments
of the present invention, a constituent having the same function is labeled the same,
and tedious explanations shall not be made.
[0019] Firstly, the MRI apparatus according to the present embodiment will be explained.
FIG. 1 is a block diagram showing the schematic configuration of the MRI apparatus
according to the present embodiment. The MRI apparatus 100 is provided with a magnet
101 for generating a static magnetic field, a gradient coil 102 for generating a magnetic
field gradient, a sequencer 104, a magnetic field gradient power supply 105, a radio
frequency magnetic field generator 106, a probe 107 for irradiating a radio frequency
magnetic field and detecting a nuclear magnetic resonance signal (echo), a receiver
108, a computer 109, a display unit 110, and a storage medium 111. A subject (e.g.,
a living body) 103 is loaded on a bed (table) or the like, and placed within the static
magnetic field space generated by the magnet 101.
[0020] The sequencer 104 sends a command to the magnetic field gradient power supply 105
and the radio frequency magnetic field generator 106, so as to generate the magnetic
field gradient and the radio frequency magnetic field, respectively. The radio frequency
magnetic field being generated is applied to the subject 103 via the probe 107. The
probe 107 receives an echo generated from the subject 103, and the echo undergoes
detection by the receiver 108. The sequencer 104 sets a nuclear magnetic resonance
frequency (detection reference frequency f
0) as a reference of detection. Signals having undergone the detection are transferred
to the computer 109, and subjected to a signal processing such as the image reconstruction.
The display unit 110 displays a result of the signal processing. If needed, the storage
medium 111 may store the detected signals and measurement conditions.
[0021] The sequencer 104 controls each element to operate with the timing and strength as
programmed in advance. A program describes specifically about the timing and strength
of the radio frequency magnetic field, magnetic field gradient, and signal receiving,
is referred to as a pulse sequence. There are known various pulse sequences depending
on purpose. The MRI apparatus 100 according to the present embodiment employs a GrE
pulse sequence which obtains a difference in resonance frequencies between tissues
as phase information. The GrE pulse sequence includes an RF-spoiled GRASS sequence,
for instance.
[0022] The computer 109 of the present embodiment activates each element of the MRI apparatus
100 according to the pulse sequence, measures echoes, and obtains an image with desired
contrast, from the echoes being measured. In order to implement the above procedure,
as shown in FIG. 2, the computer 109 of the present embodiment is provided with an
echo measuring part 210 which instructs the sequencer 104 to measure the echoes and
places the echoes thus obtained on the k-space, an operation part 250 which carries
out an operation on the echoes placed on the k-space to generate an image, and a display
processor 240 which displays the obtained image on the display unit 110. The operation
part 250 is provided with an image reconstruction part 220 for reconstructing a complex
image from the echoes placed on the k-space, and an image transformer 230 for carrying
out a predetermined operation on the complex image being reconstructed to generate
a real number image with desired contrast.
[0023] The CPU in the computer 109 loads on its memory, the programs stored in the storage
medium 111, and executes those programs, thereby implementing each of the functions
in the computer 109.
[0024] Next, FIG. 3 shows a flow of the imaging process according to the present embodiment,
being executed by the computer 109 provided with those functions above.
[0025] Upon accepting an instruction to start imaging with the setting of various imaging
conditions, such as TE, the echo measuring part 210 carries out the measurement for
acquiring echo signals being sufficient for enabling the reconstruction of one image,
according to a predetermined pulse sequence, and placing the echo signals on the k-space
(step S1101). Thereafter, the image reconstruction part 220 reconstructs an image
from the echo signals placed on the k-space (image reconstruction process; step S1102).
Here, a complex image is obtained. Then, the image transformer 230 subjects each pixel
value of the obtained complex image to the transformation process, thereby obtaining
a real number image in which each pixel value is a real number (image transformation
process; step S1103). Then, the display processor 240 displays thus obtained real
number image on the display unit 110, in the form of a grayscale picture (step S1104).
[0026] Next, detailed explanations will be made as to the processing performed by the echo
measuring part 210, the image reconstruction part 220, and the image transformer 230.
[0027] The echo measuring part 210 provides an instruction to the sequencer 104 according
to the predetermined pulse sequence, collects echoes, and places the echoes on the
k-space. The present embodiment employs the GrE pulse sequence as described above.
Here, an explanation will be made as to the RF-spoiled GRASS sequence as an example
of the GrE pulse sequence that is used in the present embodiment. FIG. 4 is a diagram
of the pulse sequence. In this figure, RF, Gs, Gp, and Gr represent, respectively,
the radio frequency magnetic field, a slice magnetic field gradient, a phase encoding
magnetic field gradient, and a readout magnetic field gradient.
[0028] In the RF-spoiled GRASS sequence, irradiation of the radio frequency magnetic field
(RF) pulse 302 is performed together with applying the slice magnetic field gradient
pulse 301, thereby exciting magnetization of a predetermined slice within the subject
103. Next, a slice encoding magnetic field gradient pulse 303 and a phase encoding
magnetic field gradient pulse 304 are applied, so as to add positional information
to the magnetization phase in the slice direction and in the phase encoding direction.
After a readout magnetic field gradient 305 for dephasing is applied, one nuclear
magnetic resonance signal (echo) 307 is measured, while applying the readout magnetic
field gradient pulse 306 for adding positional information in the readout direction.
Finally, a slice encoding magnetic field gradient pulse 310 for rephasing and a phase
encoding magnetic field gradient pulse 309 are applied.
[0029] The echo measuring part 210 repeatedly executes the aforementioned procedure every
repetition time TR, with varying the strength of the slice encoding magnetic field
gradient pulses 303, 310 (slice encoding amount ks) and the phase encoding magnetic
field gradient pulses 304 and 309 (an amount of phase encoding kp), and the phase
of the RF pulse, thereby measuring echoes necessary for obtaining one image. The phase
of the RF pulse is increased every time by 117 degrees, for instance. In FIG. 4, the
number following the hyphen indicates the number of repeated times.
[0030] Each of the echoes being measured is placed on the three-dimensional k-space having
coordinate axes,
kr, kp, and
ks. On this occasion, one echo occupies one line which is parallel to the kr-axis on
the k-space. A absolute value image obtained by the RF-spoiled GRASS sequence becomes
T1 (longitudinal relaxation time) weighted image, upon setting TE (echo time: time
period from irradiation of the RF pulse 302 to the echo measurement 307) to be short,
whereas upon setting the TE to be long, the absolute value image becomes T2* weighted
image in which phase dispersion in the pixels is reflected.
[0031] The image reconstruction part 220 subjects the echoes (data) placed on the k-space
to a process such as the three-dimensional inverse Fourier transform, and performs
the image reconstruction process to reconstruct a complex image in which each pixel
is represented as a complex number.
[0032] The image transformer 230 subjects each of the pixel values of the complex image
reconstructed by the image reconstruction part 220 to the transformation process according
to a complex operation, and performs the image transformation process for generating
a real number image. The image transformation process renders a tissue to be enhanced
(a tissue of interest) to have desired intensity, and simultaneously enhances the
phase with a predetermined degree of enhancement.
[0033] Specifically, the image transformer 230 transforms the pixel value
s of each pixel in the complex image being reconstructed, according to the formula
(1), and obtains the real number image in which the pixel value of each pixel is
s1.

Here, i represents an imaginary unit, θ
1 represents an argument of the pixel value in the tissue of interest, and w represents
a multiplication factor of the argument, indicating the degree of phase enhancement.
It is to be noted here that w is a real number greater than or equal to zero. The
condition of w = 1 keeps a phase difference between the pixels unchanged. In addition,
θ
0 is an angle for determining the intensity, and it determines the intensity of the
tissue of interest.
[0034] A pixel corresponding to the tissue of interest is specified at an identical position
on the image previously obtained, or on the absolute value image generated from the
image reconstructed by the image reconstruction part according to a conventional method,
and thereafter, the argument θ
1 of the pixel value in the tissue of interest is determined in advance, using an argument
of the specified pixel. In general, the argument of the pixel value of a vein in the
image is subject to change, depending on a degree of blood oxygenation, a ratio between
the blood and other tissues within a voxel, and the like. Therefore, all the values
are not the same, and they have a predetermined distribution. In this connection,
for example, a typical pixel (representative pixel) is determined, and the argument
of its pixel value is used as the argument θ
1. In order to obtain preferable contrast across the image, it is alternatively possible
to configure such that an average value is used, as to the arguments of the pixel
values of the respective pixels within the tissue of interest in the image.
[0035] The angle for determining intensity θ
0 is expressed as θ
0 = arccos (t), or θ
0 = arcsin (t) - n/2 (here, "arccos" indicates arc cosine, and "arcsin" indicates arc
sine), by using an intensity coefficient t (0 ≤
t ≤ 1) for determining the intensity of the tissue of interest. By way of example,
when the intensity coefficient t of the tissue of interest is set to be zero to render
the intensity of the tissue of interest to be zero, the angle for determining intensity
θ
0 is set to be n/2 or -n/2. On the other hand, when the intensity coefficient t of
the tissue of interest is set to be the maximum (1) and the intensity is not reduced,
the angle for determining intensity θ
0 is set to be zero. When the angle for determining intensity θ
0 is set to be n/3 or -n/3, the intensity of the tissue of interest becomes a half
of the absolute value of the original pixel value. The intensity in the area other
than the tissue of interest is determined by the angle for determining intensity θ
0 and the multiplication factor w.
[0036] The formula (1) expresses the transformation in which the pixel value
s of each pixel is multiplied by exp(-iθ
1), thereby decreasing the argument by θ
1, setting the exponent w to multiply the argument by w, thereafter divided by (|s|
w-1) to resume the size, and multiplied by exp (iθ
0) to increase the argument by θ
0, then obtaining the absolute value of the real part. With reference to FIG. 5, the
image transformation process on the complex plane according to this formula (1) will
be explained.
[0037] FIG. 5A is a processing flow for explaining the flow of the image transformation
process according to the image transformer 230. FIG. 5B to FIG. 5G illustrate modes
of action on the complex plane, provided to the pixel value respectively by the processes
in the steps in FIG. 5A. FIG. 5B to FIG. 5G are complex planes (Gauss planes), setting
the horizontal axis as a real axis (Re), and the vertical axis as an imaginary axis
(Im). Here, an explanation will be made taking an example that a vein is assumed as
the tissue of interest, the argument multiplication factor w is assumed as 2, and
the angle for determining intensity θ
0 is assumed as n/2. According to the transformation with the settings as described
above, the intensity of the vein becomes lowered, and the phase contrast between tissues
is doubled.
[0038] As shown in FIG. 5B, the pixel values of the respective pixels in the complex image
that is reconstructed by the image reconstruction part 220 are plotted on the complex
plane. Here, the reference numeral 401 indicates the pixel value of the vein. The
reference numeral 402 indicates a representative pixel value of the pixel in any other
tissue. The argument of the vein pixel value 401 is assumed as θ
1, and the argument of the other tissue pixel value 402 is assumed as different from
the vein pixel value 401 by Δθ.
[0039] Firstly, the arguments of the pixel values of the respective pixels are decreased
by θ
1 (step S1201). Here, the process for reducing the arguments of the pixel values of
the respective pixels by θ
1 corresponds to a process on the complex plane where the pixel values of the respective
pixels are turned in clockwise about the origin only by θ
1. Accordingly, as shown in FIG. 5C, the pixel value 401 of the representative pixel
of the vein coincides with the real axis (Re).
[0040] Next, the arguments of the pixel values of the respective pixels are multiplied by
w (doubled) (step S1202). At this point, the pixel value 401 does not undergo any
change since it is positioned on the real axis and the argument is zero. On the other
hand, the difference Δθ between the argument of the pixel value 402 and the argument
of the pixel value 401 becomes doubled (2Δθ). Accordingly, as shown in FIG. 5D, the
difference (phase difference) between the argument of the vein and that of the tissue
other than the vein is increased, being multiplied by w.
[0041] Next, the arguments of the pixel values of the respective pixels are increased by
θ
0 (n/2) (step S1203). This process corresponds to a process on the complex plane, where
the pixel values of the respective pixels are turned in anticlockwise about the origin
by θ
0. According to the processing as described above, as shown in FIG. 5E, the vein pixel
value 401 coincides with the imaginary axis (Im).
[0042] Then, the real parts of the pixel values of the respective pixels are obtained (step
S1204). As shown in FIG. 5F, here, projections (411, 412) of the respective pixel
values on the real axis (Re) are obtained. According to this process, the vein pixel
value 401 on the imaginary axis (Im) forms a projection image 411 whose size is zero.
On the other hand, the other tissue pixel value 402 becomes the real part 412 with
the doubled argument difference (phase difference) relative to the argument of the
vein.
[0043] Then, as shown in FIG. 5G, the absolute values 421 and 422 of the pixel values after
the projections are taken (step S1205), respectively, assuming those absolute values
as pixel values after the respective pixels are subjected to the image transformation
process.
[0044] In the real image obtained according to the processing as described above, the intensity
of the vein becomes zero, whereas the intensity of the other tissue becomes equal
to the intensity of the image whose phase difference from the vein is doubled, relative
to the phase difference of the complex image after the reconstruction. Under the condition
that TE is constant, the image having a phase difference relative to the phase of
vein, being twice as large as the difference of the complex image after the reconstruction,
corresponds to an image that is acquired by an MRI apparatus having static magnetic
field strength doubling that of the MRI apparatus which is used to obtain the original
image. By way of example, in the case where the static magnetic field strength of
the MRI apparatus used for acquiring the original image is 1.5 Tesla, the real image
corresponds to the image that is obtained by the MRI apparatus having static magnetic
field strength of 3 Tesla. On the other hand, if the static magnetic field strength
is assumed as constant, this real image corresponds to an image obtained under the
condition that TE is doubled.
[0045] As described above, according to the present embodiment, each pixel value of the
complex image obtained by the reconstruction is subjected to the transformation according
to complex operation, and it is possible to create an image with desired contrast.
This transformation includes a process for increasing or decreasing the phase (argument)
of the pixel value of each pixel, by a certain amount, and a process for multiplying
the phase (argument) of each pixel by a constant, and accordingly implements the control
of intensity and the control of the phase enhancement degree (the degree of phase
enhancement), each quantitatively. As thus described, according to the present embodiment,
it is possible to render a desired tissue to have desired intensity, and further,
the degree of phase enhancement reflecting the influence of the static magnetic field
strength and TE is quantitatively controllable. Therefore, by the use of phase information,
it is possible to eliminate the impact of the difference in static magnetic field
strength and TE for showing the phase contrast between tissues. According to the present
embodiment, the phase information is effectively utilized, thereby enabling implementation
of various contrast control, in the post-process after the image acquisition.
[0046] According to the present embodiment, since the degree of phase enhancement is handled
quantitatively, it is possible to control the degree of phase enhancement depending
on the imaging conditions such as the static magnetic field strength and TE which
have an influence on the phase. As discussed above, the GrE pulse sequence is employed
in the present embodiment. The argument of the pixel value in the image obtained by
the GrE pulse sequence is approximately proportional to the static magnetic field
strength and TE. Therefore, in the present embodiment, the multiplication factor w
is adjusted to transform the argument of each pixel value, to the argument of the
pixel value in an image taken with the static magnetic field strength and TE which
are different from those when actual imaging is performed.
[0047] By way of example, when the image transformation process with the setting the multiplication
factor w to 2, according to the image transformer 230 of the present embodiment, is
performed to the image obtained by the MRI apparatus with the static magnetic field
strength 1.5 Tesla, the phase of each tissue becomes approximately equivalent to that
of the image which is taken by the apparatus with the static magnetic field strength
of 3 Tesla, being doubled in strength. Therefore, it is possible to obtain from the
image taken by the 1.5 Tesla MRI apparatus, phase contrast corresponding to that of
the image taken by the apparatus with the static magnetic field strength of 3 Tesla.
[0048] On the other hand, according to the present embodiment, an approximately identical
degree of phase enhancement can be obtained as to the images taken under the conditions
where the static magnetic field strength and TE are variously changed.
[0049] By way of example, when the image A taken with the static magnetic field strength
being B
a (T) and TE being TE
a (ms) undergoes the image transformation process of the present embodiment with the
conditions that θ
1 = θ
1a and w = w
a, and the image B taken with the static magnetic field strength being B
b (T) and TE being TE
b (ms) undergoes the image transformation process according to the method of the present
embodiment with the conditions that θ
1 = (θ
1a × B
b × TE
b/B
a/TE
a) and w = (w
a × B
a × TE
a/B
b/TE
b), and both images show approximately the same degree of image enhancement.
[0050] In addition, according to the present embodiment, based on an image taken under a
certain condition, it is possible to obtain phase enhancement of a predicted image
which is taken under a different condition.
[0051] By way of example, when an image A
e is generated after subjecting the image A taken with the static magnetic field strength
B
a (T) and TE being TE
a (ms) to the image transformation process under the conditions that θ
1 = θ
1a and w = w
a, and the same image A is subjected to the image transformation process of the present
embodiment under the conditions that θ
1 = θ
1a and w = (w
a × B
p × TE
p/B
a/TE
a), it is possible to predict an image B
e which is obtained by taking an image of the same subject with the static magnetic
field strength being B
p (T) and TE being TE
p (ms) and performing the same image transformation process thereon.
[0052] According to this method, it is possible to virtually generate contrast of images
under various imaging conditions. By way of example, using the image taken by a 3
Tesla apparatus, it is possible to virtually create an image which is taken by a 7
Tesla apparatus having a higher magnetic field. Just multiplying w by 7/3 enables
estimation of the 7 Tesla image from the 3 Tesla image.
[0053] In the present embodiment, when the image transformation process is performed with
setting the multiplication factor w to 1, a tissue of interest is made to have desired
intensity without the phase enhancement.
[0054] In the image transformation process performed by the image transformer 230, it is
sufficient if all the transformation elements included in the aforementioned formula
(1) are applied to the pixel value of each pixel of the reconstructed image, and the
order of those elements does not matter.
[0055] For example, the formula (1) is modified as the following formula (2), and the processes
of the aforementioned step S1201 and step S1202 are carried out in the order as the
following; i.e., the argument of the pixel value
s of each pixel is multiplied by
w and then decreased by (w x θ
1) :

[0056] Alternatively, the formula (1) may be modified as the formula (3) in the following,
and it is possible to configure such that the argument of the pixel value
s of each pixel is multiplied by
w and each pixel is projected on the line which forms the angle for determining intensity
θ
0 with the pixel value of the representative pixel in the tissue of interest, and the
absolute value of the pixel value is taken:

[0057] With reference to FIG. 6, there will be explained a flow of the image transformation
process according to the image transformer 230 for the above case, and a mode of action
performed on the pixel value in each step of the process. Here, similar to FIG. 5,
the vein is assumed as the tissue of interest, and the multiplication factor w is
set to be 2. FIG. 6A is a processing flow for explaining the flow of the image transformation
process. FIG. 6B to FIG. 6F illustrate modes of action provided to the pixel value
respectively by the processes in the steps in FIG. 6A, on the complex plane setting
the horizontal axis as a real axis (Re), and the vertical axis as an imaginary axis
(Im). Settings of other conditions are the same as those in FIG. 5.
[0058] The pixel values of the respective pixels in the complex image that is reconstructed
by the image reconstruction part 220 are plotted on the complex plane as shown in
FIG. 6B.
[0059] Firstly, as shown in FIG. 6C, the arguments of the pixel values of the respective
pixels are multiplied by w (doubled) (step S1301). Then, as shown in FIG. 6D, a line
(the second line) 420 is obtained, which forms the angle (the first angle) θ
0 with the line (the first line) 410 made by the pixel value 401 of the representative
pixel of the vein (step S1302). As shown in FIG. 6E, there are obtained projections
411 and 412 of the respective pixel values of the pixels onto the line 420 (step S1303).
Then, as shown in FIG. 6F, the absolute values (421, 422) of the projections are taken
(step S1304), and they are respectively set as the pixel values of the pixels after
the image transformation process.
[0060] According to the processing above, the intensity of the tissue other than the vein
is equivalent to that of the image in which a phase difference from the vein is doubled
relative to the complex image after the reconstruction. By way of example, if the
θ
0 is assumed as n/2, the line 410 made by the vein pixel value 401 is orthogonal to
the line 420. Therefore, its projection 411 becomes zero.
[0061] It is further possible to configure the processes from the steps S1301 to S1303 such
that the arguments of the pixel values of the respective pixels are multiplied by
w, then the pixel values of the respective pixels are turned about the origin by the
second angle (θ
0 - wθ
1), the line 420 is made to coincide with the real axis (Re), and projection onto the
real axis is obtained (e.g., a real part is obtained).
[0062] Furthermore, the processes from the steps S1201 to S1203 in FIG. 5 may be carried
out in the order that the argument θ
1 of the pixel value of the representative pixel is subtracted from the argument of
the initial pixel value
s of each pixel, the pixel value of each pixel after the subtraction is divided by
the absolute value of the initial pixel value
s of each pixel, then the value being obtained is raised to the power of (w-1), the
result is multiplied by the initial pixel value
s, and thereafter, the argument of the pixel value of each pixel is increased by (θ
0 - θ
1).
[0063] In the present embodiment, a predetermined one value is employed as the argument
θ
1 of the pixel value of the tissue of interest, but this is not the only example. It
is further possible that the image transformation process is performed while changing
θ
1, various post-process images being displayed, and allowing an inspector to visually
decide θ
1 which depicts the tissue of interest the best. It should be noted that an optimum
θ
1 value remains almost unchanged even when the subject is different, as far as the
pulse sequence, the static magnetic field strength, and the TE are the same. Therefore,
once the optimum θ
1 value is predetermined according to some subjects used as examples, and stores the
optimum value, it is not necessary to obtain the optimum θ
1 value every time an image is taken.
[0064] Here, a detailed explanation will be made as to the image transformation process
according to the image transformer 230, for each pixel value of the complex image.
As described above, the image transformation process includes, a process for rendering
the intensity of the tissue to be enhanced (tissue of interest) to have desired intensity
(intensity enhancing process), and a process for allowing the phase to be enhanced,
using a predetermined degree of enhancement (phase enhancing process). In order to
implement these processes, the image transformer 230 is provided with an intensity
enhancing operation part 231 and a phase enhancing operation part 232.
[0065] The intensity enhancing operation part 231 carries out operation to increase or decrease
the phase (argument) of the pixel value of each pixel by a certain amount, in order
to set the intensity targeted for the enhancement to be the desired intensity. The
operation for increasing or decreasing the phase (argument) of the pixel value of
each pixel by a certain amount, corresponds to a process to rotate the complex vector
on the complex plane as shown in FIG. 5B, FIG. 5C, and FIG. 5E. Therefore, the operation
executed by the intensity enhancing operation part 231 is referred to as an operation
of argument rotation.
[0066] The phase enhancing operation part 232 carries out the operation to raise each pixel
value to the power of a real number in order to enhance the phase with a predetermined
degree of enhancement. As shown in FIG. 5D, the operation for calculating each pixel
value raised to the power of a real number corresponds to a process to multiply the
phase (argument) of each pixel by a constant. Therefore, the operation executed by
the phase enhancing operation part 232 is referred to as an operation of argument
real-number multiplication.
[0067] In other words, each of the aforementioned formulas (1), (2), and (3) includes the
operation of argument rotation and the operation of argument real-number multiplication.
As described above, for example, the formula (1) includes the operation of argument
rotation for decreasing the argument by θ
1 by multiplying the pixel value s of each pixel by exp(-iθ
1), the operation of argument real-number multiplication for multiplying the argument
by w, using the power of w, then dividing the result by (|s|
w-1) obtained by calculating the absolute value of the pixel value s raised to the power
of (w-1), thereby resuming the size, and the operation of argument rotation for multiplying
the argument by exp(iθ
o) to increase the argument by θ
0.
[0068] In a general computer, it is difficult to directly handle a complex number, and therefore,
when the computer 109 actually executes the operation of argument rotation and the
operation of argument real-number multiplication as described above, a transformation
is performed to establish an operation which uses a real part and an imaginary part
of a complex value. One example of this transformation will be explained.
[0069] Firstly, the operation of argument rotation according to the intensity enhancing
operation part 231 will be explained in detail. This operation is executed in the
aforementioned steps S1201 and S1203 of the image transformation process as shown
in FIG. 5A. The intensity enhancing operation part 231 of the present embodiment uses
the real part and the imaginary part of the complex number, so as to perform the operation
of argument rotation which rotates the argument of the complex number by a given angle
θ.
[0070] In general, if the real part and the imaginary part of the complex number z are assumed
as
a and b, respectively, the complex number z is expressed by the following formula (4)
in the orthogonal form:

Here, i is an imaginary unit (i
2 = -1).
[0071] The operation for rotating the argument of the complex number z by a given angle
θ corresponds to the process for rotating the complex vectors (a, b) by θ on the complex
space. When the complex number after the transformation is assumed as z
1 (z
1 = a
1 + ib
1), the complex vectors (a
1, b
1) after the transformation are expressed by the following formula (5), using a rotation
matrix:

When this is expanded, the complex number z
1 after the transformation is expressed by the formula (6):

[0072] The intensity enhancing operation part 231 of the present embodiment uses the aforementioned
formula (6) to rotate the complex vector of the pixel value s, and obtains a pixel
value after the rotation.
[0073] Next, a detailed explanation will be made as to the operation of argument real-number
multiplication according to the phase enhancing operation part 232. This operation
corresponds to the operation used in the step S1202 shown in the aforementioned FIG.
5A. The phase enhancing operation part 232 of the present embodiment performs a binomial
expansion of the complex number in the orthogonal form, thereby calculating the complex
number raised to the power of a real number.
[0074] If the real part and the imaginary part of the complex number z are assumed as
a and
b, respectively, the complex number z is expressed by the aforementioned formula (4)
in the orthogonal form. Before using the binomial expansion, the formula (4) is firstly
modified as the following formula (7):

On this occasion, the complex number z raised to the power of w is expressed by the
following formula (8):

[0075] The binomial expansion is performed through conditional branching based on the size
correlation between the real part
a and the imaginary part b.
[0076] When |a| ≥ |b|, if it is assumed that x = b/a, the aforementioned formula (8) is
expressed by the following formula (9):

Here, when (1 + ix)
w (|ix| < 1) is expanded according to the binomial expansion, z
w is expressed by the following formula (10) :

[0077] On the other hand, when |a| < |b|, it is assumed that x = a/b in the aforementioned
formula (8), and if further modified, it is expressed as the following formula (11):

Here, when (1 - ix)
w (|-ix| < 1) is expanded according to the binomial expansion, z
w is expressed by the following formula (12):

[0078] The phase enhancing operation part 232 of the present embodiment expands the aforementioned
formula (10) and the formula (12) using a predetermined order, and performs the operation
of argument real-number multiplication. Hereinafter, specific expansion examples of
the aforementioned formula (10) and the formula (12) will be shown, taking an example
that they are expanded to the fifth order.
[0079] When the formula (10) under the condition that |a| ≥ |b| is expanded to the fifth
order, it is expressed as the following formula (13):

[0080] When a < 0, if w is not integer, a
w becomes a complex number, and therefore for carrying out the operation of the formula
(13), further conditional branching is performed based on the plus or minus sign of
a, as the following.
[0081] When a ≥ 0, x is returned to b/a and the real part and the imaginary part are respectively
integrated in the formula (13), and this is expressed as the following formula (14):

[0082] When a < 0, a
w is changed depending on the plus or minus sign of b. In other words,

When those formulas (15) and (16) are modified by the use of Euler's formula, they
are expressed as the following formulas (17) and (18), respectively:

The formula (14) is modified by using the formula (17) and formula (18), and the real
part and the imaginary part are respectively integrated, they are expressed as the
following formulas (19) and (20) depending on the plus or minus sign of b.

[0083] On the other hand, when the formula (12) after the binomial expansion under the condition
that |a| < |b| is expanded to the fifth order, for instance, z
w is expressed by the following formula (21):

[0084] When x is returned to a/b, the aforementioned formula (21) is expressed by the following
formula (22):

[0085] Here, the term (i
wb
w) is changed depending on the plus or minus sign of b. In other words,

When those formulas (23) and (24) are modified by the use of Euler's formula, they
are expressed as the following formulas (25) and (26), respectively:

[0086] The formula (22) is modified by using the formula (25) and the formula (26), and
the real part and the imaginary part are respectively integrated, they are expressed
as the following formulas (27) and (28) .

[0087] The phase enhancing operation part 232 of the present embodiment performs the operation
of argument real-number multiplication, according to any of the aforementioned formulas
(14), (19), (20), (27), and (28) depending on the size correlation between a and b,
and the signs thereof, within the complex number (z = a + ib) targeted for the transformation.
[0088] Next, a specific explanation will be made as to an arithmetic processing using each
of the aforementioned formulas in each of the steps in FIG. 5A, in the case where
the pixel value s (s = A + iB) represented as the complex number A + iB is provided.
[0089] Firstly, in the step S1201, the process is performed for reducing the argument of
the pixel value s by θ
1. In other words, the intensity enhancing operation part 231 carries out this calculation
by using the formula (6), and obtains the calculation result s
2 that is expressed by the following formula (29):

Here, the calculation result s
2 is expressed by the following

[0090] Next, with respect to thus obtained s
2, the argument is multiplied by w in the S1202. This calculation is performed by using
any of the aforementioned formulas (14), (19), (20), (27), and (28) depending on the
size and the sign of A
2 and B
2. On this occasion, the A
2 substitutes for a, and B
2 substitutes for b, in each of the formulas. Here, its calculation result S
3 is expressed by the following formula (31):

[0091] Next, the argument of s
3 is increased by θ
0 in the step S1203. The intensity enhancing operation part 231 performs this calculation
by using the formula (6), and obtains the calculation result s
4 that is expressed by the following formula (32):

Here, the calculation result s
4 is expressed by the following formula (33):

[0092] Then, the absolute value |Re (s
4)| of the real part of s
4 is calculated in the steps S1204 and S1205, and the pixel value s
1 after the image transformation process is obtained. Here, s
1 is expressed by the following formula (34):

[0093] So far, there has been explained a method for carrying out the calculations of the
formulas (1), (2), and (3) in the present embodiment, by using the rotation matrix
and the binomial expansion on the complex plane.
[0094] The explanation has been made, taking an example that the binomial expansion is performed
to the fifth order, as a specific expansion example. However, the number of the order
is not limited to this example. In order to obtain sufficient calculation precision,
it is desirable that the order is at least the third, and equal to or larger than
w.
[0095] The order applied to the binomial expansion has an impact on the precision of s
w and its calculation load. In other words, when the order is made larger, a degree
of precision becomes higher, whereas increasing the number of terms in the polynomial
expression after the expansion may result in that the calculation load is increased.
On the other hand, if the order is made smaller, the calculation time is reduced,
but the precision level is lowered. It is to be noted that if the order is the third
or less, or equal to or less than w, it is still possible to obtain a result, even
though the precision is deteriorated.
[0096] In view of those outcomes above, an appropriate order is selected according to the
multiplication factor w. By way of example, the order corresponding to the multiplication
factor w is suitable from the view point of the precision and calculation time. In
other words, when the maximum value of w is around five, the order is set to be the
fifth.
[0097] By using the method as described above, it is possible for the image transformer
230 of the present embodiment to perform the image transformation process on each
pixel value of the complex image, according to the polynomial operation using the
real part value and the imaginary part value of the pixel value being the complex
number. Since the polynominal operation is relatively a simple expression, implementation
thereof is easy for the computer 109, and further the operation load is low, enabling
a processing within a short time.
[0098] Hereinafter, an example of the image transformation process according to the present
embodiment will be described. FIG. 7A and FIG. 7B show a result of the processing
in the case where θ
1 was determined visually, and the image transformation process of the present embodiment
was performed with the setting of w = 2. FIG. 7A shows an image 510 after the image
transformation process of the present embodiment, and FIG. 7B shows an intensity profile
520 of the image 510, taken along the line connecting P and Q. The image 510 was obtained
as a result of the image transformation process and the minimum intensity projection
thereof which were performed on 10 sheets out of 80 sheets of complex images, the
images being taken under the conditions that the field of view was 220 × 220, the
matrix size was 512 × 512, the number of slices was 80, the slice thickness was 80
mm (one slice was 1 mm in thickness), and TR/TE was 65/40 ms. On this occasion, the
optimum θ
1 was -0.6 radian.
[0099] As shown in FIG. 7A, according to the image transformation process of the present
embodiment, it is found that the image was visualized with preferable contrast, where
the brain veins were enhanced. In addition, according to the intensity profile 520
as shown in FIG. 7B, it is found that the intensity of very fine regions corresponding
to the veins was lowered and the intensity was sufficiently close to zero.
[0100] In order to verify the effect by the change of the multiplication factor w, the image
transformation process of the present embodiment was performed under the condition
that w = 1, with the other conditions being the same as the aforementioned case as
shown in FIG. 7A and FIG. 7B, and its result is shown in FIG. 8A and FIG. 8B. FIG.
8A shows an image 610 after the image transformation process, and FIG. 8B shows the
intensity profile 620 along the line connecting P and Q on the image 610.
[0101] According to the intensity profile 620 of FIG. 8B, it is found that the intensity
of the veins was sufficiently close to zero. However, it is also found that the region
corresponding to the veins became thinner than the intensity profile 520 of FIG. 7B.
Also in the image 610 of FIG. 8A, it is found that the veins were visualized finer
than the image 510 of FIG. 7A. According to those results above, it is found that
the degree of phase enhancement is changed depending on the multiplication factor
w.
[0102] Next, by using a brain image taken by the MRI apparatus with the static magnetic
field strength of 1.5 Tesla, there will be shown an example for displaying an image
in which the cerebral parenchyma (white matter and gray matter) is enhanced. It is
known that there is a frequency difference of approximately 6 ppm between the white
matter and the gray matter. A phase difference caused by this frequency difference
is enhanced and visualized as an image, thereby depicting the white matter and the
gray matter with high contrast. In order to achieve this, in the example here, a setting
was made as θ
0 = -n/3 so that the intensity coefficient of the pixel having the argument between
the white matter and the gray matter became 1/2. This was determined in this manner,
so that even when the multiplication factor w was changed, strength relationship as
to the intensity between the white matter and the gray matter was not changed. In
addition, θ
1 was determined as 0.1 visually. The multiplication factor
w was set to be 1 and 2, in order to evaluate the phase corresponding to an image taken
by the MRI apparatus with the static magnetic field strength of 3 Tesla, being doubled
in strength. The processing target image being used was the same as that of FIG. 7A
and FIG. 7B, and one sheet of the image out of 80 sheets was processed.
[0103] FIG. 9A shows an image 710 after the image transformation process of the present
embodiment, setting the multiplication factor w to 2, and FIG. 9B shows an image 720
after the image transformation process of the present embodiment, setting the multiplication
factor w to 1. As seen from FIG. 9A and FIG. 9B, according to the image transformation
process of the present embodiment, the white matter and the gray matter were visualized
with high contrast, and the image corresponding to 3 Tesla with the enlarged multiplication
factor w shows higher contrast. In other words, it is verified that according to the
image transformation process of the present embodiment, it was possible to display
an image with the phase being enhanced, and virtually create image contrast under
various imaging conditions.
[0104] In the embodiment as described above, the image transformer 230 obtains the real
part of the pixel value after the intensity enhancing process and the phase enhancing
process, and finally takes the absolute value thereof. Here, in the image transformation
process of the present embodiment, a process made up of the intensity enhancing process
and the phase enhancing process is referred to as an argument transformation process
which transforms the argument of the pixel value
s of each pixel in such a manner that the intensity of the region of interest becomes
a desired intensity value, and a difference between the arguments of the pixel value
s and that of the region of interest is changed with a predetermined multiplication
factor. A process for obtaining the real part of the pixel value is referred to as
a real number transformation process, and a process for obtaining the absolute value
thereof is referred to as an absolute value process.
[0105] In other words, in the aforementioned embodiment, the image transformer 230 performs
as the image transformation process; the argument transformation process, the real
number transformation process, and finally performs the absolute value process. On
the other hand, it is alternatively possible to skip this final absolute value process
and display the real part as a gray-scale picture, without change. Also in this case,
an image where the phase is enhanced can be obtained in the similar manner.
[0106] As a way of example, FIG. 10A and FIG. 10B show results obtained by the image transformation
process in which the absolute value process was skipped. In this example here, the
conditions were the same as those in FIG. 9A and (b), but the absolute value process
was skipped. FIG. 10A and (b) show the images 711 and 721 after the image transformation
process of the present embodiment, setting the multiplication factor w to 2 and 1,
respectively.
[0107] The pixel value s
5 in this case is expressed by the following formula (35):

Here, s
0 is a pixel value of the complex number obtained by the argument transformation process,
and it is expressed by the following formula (36):

[0108] When the images 711 and 721 shown in FIG. 10A and FIG. 10B are respectively compared
to the images 710 and 720 shown in FIG. 7A and FIG. 7B, it is found that the white
matter and the gray matter were successfully visualized with high contrast in the
similar manner, even though the absolute value process was not performed. As for the
images 710 and 720 on which the absolute value process was performed, the intensity
of the background was close to zero (black) similar to a typical MRI apparatus, whereas
as for the images 711 and 712 without the absolute value process, the intensity of
the background indicated intermediate density. Therefore, there is a visual difference
that the background looks a little brighter.
[0109] Even when the absolute value process is skipped, it is possible to modify the real
number transformation process performed on the pixel value s
0 after the aforementioned process as the following formula (37), in order to control
the intensity of the background. The pixel value obtained on this occasion is assumed
as s
6:

Here, the absolute value of the pixel value s of each pixel is added to the pixel
value s
0 after the argument transformation process. Accordingly, the intensity of the background
with a small absolute value is kept to be small, and the intensity value covering
from the negative value to a positive value (from - |s| to |s|) is transformed to
the range from the zero to positive value (from 0 to 2|s|), thereby controlling the
background to remain dark.
[0110] The imaginary part may be used instead of the real part of the pixel value s
0 after the argument transformation process, as the following formula (38). The pixel
value obtained on this occasion is assumed as s
7. According to this procedure, a similar effect may be obtained as the effect of the
formula (37).

The real number transformation process is not limited to the example above, but various
modifications may be possible.
[0111] When the image transformation process is carried out according to the formula (35)
and the formula (37), since the absolute value process is not performed, the range
of the intensity coefficient t is set to be in the range of -1 ≤ t ≤ 1. Therefore,
when the intensity of the tissue of interest is minimized, the angle for determining
intensity θ
0 (= arccos(t)) is set to be arccos(-1) = n, by using the minimum value (-1) of t.
[0112] When the image transformation process is carried out according to the formula (38),
the intensity coefficient t falls in the range of -1 ≤ t ≤ 1 in the same manner. Therefore,
similar to the example above, the minimum value (-1) is used as the value of t, to
calculate the angle for determining intensity θ
0, for the case where the intensity of the tissue of interest is to be minimized. On
this occasion, since the projection is made on the imaginary axis, it is defined as
the following: the angle for determining intensity θ
0 = arccos(-1) + n/2 = 3n/2. It is to be noted that if the intensity of the tissue
of interest is not intended to be lowered, it is defined as the following: the angle
for determining intensity θ
0 = arccos(1) + n/2 = n/2.
[0113] Further in the image transformation process of the present invention, a representative
pixel is determined and the argument of the pixel value is used as the argument of
the tissue of interest. Actually, the arguments of all the pixel values in the tissue
to be enhanced (tissue of interest) are not the same value, and have a certain distribution.
For example, when the tissue of interest corresponds to a vein, as shown in FIG. 7A
and FIG. 7B, an image in which the intensity of the vein being enhanced (darkened)
was obtained by setting θ
1 to -0.6. On the other hand, as for a thick vein or a lesion area such as bleeding,
the argument of the pixel value may be smaller than -0.6 in some cases. On this occasion,
if the pixel value for this case is transformed according to any of the formulas (1)
to (3), the real part of the pixel whose argument is smaller than θ
1 becomes a negative value, and by taking the absolute value of this value, resulting
in having a positive value. In other words, the thick vein or the lesion area are
displayed brightly.
[0114] In order to prevent this occurrence, the pixel having the argument smaller than θ
1 is controlled to have zero intensity after the image transformation process, whereas
as for the pixel having the argument larger than θ
1, it is controlled so that the intensity after the image transformation process does
not change.
[0115] On this occasion, each pixel value s
1 after the image transformation process is performed according to the following formula
(39), and thus obtained pixel value s
8 is assumed as a final result. It is to be noted here that s
0 represents a pixel value after the intensity enhancing process and the phase enhancing
process expressed by the formula (36) are performed.

[0116] The image transformation according to the formula (39) allows the intensity of the
pixel having the argument before the image transformation smaller than θ
min, to have a degree of enhancement equivalent to the pixel having the argument θ
min, and allows the intensity of the pixel having the argument before the image transformation
larger than θ
max, to have a degree of enhancement equivalent to the pixel having the argument θ
max.
[0117] Any values are available to be set as θ
min and θ
max. By way of example, if they are set as the following formulas (40) and (41), the
intensity of the pixel having the argument smaller than θ
min becomes the minimum intensity, whereas the intensity of the pixel having the argument
larger than θ
max does not fall to a lower level:

[0118] The processing according to the aforementioned formula (39) is applicable not only
to the s
1 as described above, but also to s
5, s
6, and s
7, being obtained by the aforementioned formulas (35), (37), and (38), respectively.
[0119] For s
5 obtained by the formula (35) and for s
6 obtained by the formula (37), θ'
min obtained by the following formula (42) may be used as θ
min, instead of using the formula (41):

With this setting above, the degree of enhancement monotonically decreases down to
θ'
min, being smaller than θ
min.
[0120] Further, for s
7 obtained by the formula (38), θ'
max obtained by the following formula (43) may be used as θ
max:

With this setting above, the degree of enhancement monotonically increases up to θ'
max, being larger than θ
max.
[0121] It is to be noted that only the image transformer 230, or both the image reconstruction
part 220 and the image transformer 230 may be configured on an information processor
being provided separately from the MRI apparatus 100.
Explanation of References
[0122] 100: MRI apparatus, 101: magnet, 102: gradient coil , 103: subject, 104: sequencer
, 105: magnetic field gradient power supply , 106: radio frequency magnetic field
generator , 107: probe, 108: receiver, 109: computer , 110: display unit, 111: storage
medium, 210: echo measuring part, 220: image reconstruction part, 230: image transformer,
231: intensity enhancing operation part, 232: phase enhancing operation part, 240:
display processor, 250: operation part, 301: slice magnetic field gradient pulse,
302: RF pulse, 303: slice encoding magnetic field gradient pulse, 304: phase encoding
magnetic field gradient pulse, 305: readout magnetic field gradient, 306: readout
magnetic field gradient pulse, 307: echo, 309: phase encoding magnetic field gradient
pulse, 310: slice encoding magnetic field gradient pulse, 401: vein, 402: other tissue,
411: absolute value of real part of vein, 412: absolute value of real part of other
tissue, 510: image, 520: intensity profile, 610: image, 620: intensity profile, 710:
image, 711: image, 720: image, 721: image
1. A magnetic resonance imaging apparatus comprising,
an imaging unit for applying a radio frequency magnetic field and a magnetic field
gradient to a subject placed in a static magnetic field, and detecting a nuclear magnetic
resonance signal generated from the subject as a complex signal,
a computing unit for carrying out an operation on the complex signal and generating
an image, and
a display unit for displaying the image being generated,
the computing unit comprising,
an image reconstruction unit for reconstructing from the complex signal, a complex
image having a pixel value each being a complex number, and
an image transformation unit for transforming the pixel value of each pixel in the
complex image according to a complex operation which carries out at least one of rotation
and projection within a complex plane, so as to obtain an image with desired contrast,
and generating an image where the pixel value after being transformed is set as the
pixel value of each pixel.
2. The magnetic resonance imaging apparatus according to claim 1, wherein,
the image transformation unit further comprises an intensity enhancing unit for projecting
each of the pixel value onto a second line, passing through the origin at a predetermined
first angle with respect to a first line, connecting a point of the pixel value in
a region of interest on the complex plane with an origin of the complex plane.
3. The magnetic resonance imaging apparatus according to claim 1, wherein,
the image transformation unit further comprises an intensity enhancing unit for calculating
on the complex plane, a second angle being a difference between an argument of the
pixel value in the region of interest and a predetermined first angle, allowing the
pixel value of each pixel on the complex plane to rotate about the origin at an angle
corresponding to the second angle, so that the pixel value in the region of interest
forms the first angle with either the real axis or the imaginary axis on the complex
plane, and calculating elements in the direction of the axis with which the pixel
value in the region of interest forms a first angle, as to all the pixel values after
the rotation.
4. The magnetic resonance imaging apparatus according to claim 2, wherein,
the image transformation unit comprises a phase enhancing unit for multiplying an
argument of the pixel value of each pixel on the complex plane, by a predetermined
real number, prior to executing the intensity enhancing unit.
5. The magnetic resonance imaging apparatus according to claim 2, wherein,
the first angle is obtained from either arc-cosine or arc-sine of an intensity coefficient
which renders the intensity of the region of interest to be a desired intensity value.
6. The magnetic resonance imaging apparatus according to claim 1, wherein,
the image transformation unit comprises,
an argument transformation unit for performing an argument transformation process
for transforming an argument of the pixel value of each pixel in the complex image
in such a manner that intensity of the region of interest becomes a desired intensity
value, and changes a difference between the argument of the pixel value of each pixel
in the complex image and the argument of the region of interest, with a predetermined
multiplication factor w, and
an image generation unit for rendering either a real part or an imaginary part of
the pixel value of each pixel after the argument transformation process to be a new
pixel value.
7. The magnetic resonance imaging apparatus according to claim 6, wherein,
the argument transformation process assumes the argument of the pixel value in the
region of interest as θ1, changes the argument of each pixel value s by the angle equivalent to -θ1, multiplies by w the argument of the pixel value of each pixel after the change,
and thereafter allows the argument to change by the angle equivalent to a predetermined
first angle θ0.
8. The magnetic resonance imaging apparatus according to claim 6, wherein,
the argument transformation process assumes the argument of the pixel value in the
region of interest as θ1, changes the argument of each pixel value s by the angle equivalent to -θ1, divides the pixel value of each pixel after the change by the absolute value of
the pixel value s, a resultant value being raised to the power of (w - 1), then multiplies
a further result thereof by the pixel value s, and thereafter changes the argument
of the pixel value of each pixel, by the angle equivalent to (θ0 - θ1) being a difference between a predetermined first angle θ0 and the argument θ1.
9. The magnetic resonance imaging apparatus according to claim 2, wherein,
the first angle θ0 is set to be zero, and
the region of interest is an area maximizing the intensity.
10. The magnetic resonance imaging apparatus according to claim 2, wherein,
the first angle θ0 is set to be either n/2 or n,
the region of interest is an area rendering the intensity to be zero.
11. The magnetic resonance imaging apparatus according to claim 2, wherein,
the first angle θ0 is set to be any of -n/3, n/3, -n/2, and n/2, and
the region of interest is an area rendering the intensity to be intermediate.
12. The magnetic resonance imaging apparatus according to claim 6, wherein,
the argument θ1 and the multiplication factor w are configured in such a manner that an equivalent
degree of enhancement of the argument is obtained in the images taken under the conditions
where static magnetic field strength and an echo time are variously changed, using
a ratio of the static magnetic field strength and a ratio of the echo time being a
time period from when the imaging unit applies the radio frequency magnetic field
until acquiring the nuclear magnetic resonance signal.
13. The magnetic resonance imaging apparatus according to claim 12, wherein,
when the argument transformation process with the setting of the argument θ1 as θ1a and the multiplication factor w as wa is performed on a complex image A having a combination of the static magnetic field
strength and the echo time being (Ba, TEa) , θ1 is set as (θ1a × Bb × TEb/Ba/TEa) and w is set as (wa × Ba × TEa/Bb/TEb) for a complex image B having a combination of the static magnetic field strength
and the echo time being (Bb, TEb).
14. The magnetic resonance imaging apparatus according to claim 6, wherein,
the image transformation unit configures a setting of the argument θ1 and the multiplication factor w, by using a ratio of the static magnetic field strength
and a ratio of the echo time being a time period from when the imaging unit applies
the radio frequency magnetic field until acquiring the nuclear magnetic resonance
signal, and virtually generates contrast of an image taken under the condition where
the static magnetic field strength and the echo time are different.
15. The magnetic resonance imaging apparatus according to claim 14, wherein,
when the image transformation unit performs the argument transformation process on
a complex image A having a combination of the static magnetic field strength and the
echo time being (Ba, TEa), with the setting of the multiplication factor w as wa, the argument transformation process is performed with the setting that w = wa × (Bp × TEp) / (Ba × TEa), thereby generating an image having the combination of the static magnetic field
strength and the echo time being (Bp × TEp).
16. An image processing method according to a computing unit in a magnetic resonance imaging
apparatus comprising, an imaging unit for applying a radio frequency magnetic field
and a magnetic field gradient to a subject placed in a static magnetic field, and
detecting a nuclear magnetic resonance signal generated from the subject as a complex
signal, a control unit for controlling an operation of the imaging unit, the computing
unit for carrying out an operation on the complex signal and generating an image,
and a display unit for displaying the image being generated, the image processing
method comprising,
an image reconstruction step of reconstructing from the complex signal, a complex
image having a pixel value each being a complex number, and
an image transformation step of transforming the pixel value of each pixel of the
complex image according to a complex operation which carries out at least one of rotation
and projection within a complex plane, so as to obtain an image with desired contrast,
and generating an image where the pixel value after being transformed is set as the
pixel value of each pixel.
17. The magnetic resonance imaging apparatus according to claim 3, wherein,
the intensity enhancing unit subjects a complex vector of the pixel value to the rotation
on the complex plane by using a rotation matrix, thereby obtaining a pixel value after
the rotation.
18. The magnetic resonance imaging apparatus according to claim 4, wherein,
the phase enhancing unit represents the pixel value as a real part and an imaginary
part, and calculates the pixel value of each pixel to be raised to the power of a
real number by using a binomial expansion, thereby multiplying the argument of the
pixel value by the real number.
19. The magnetic resonance imaging apparatus according to claim 7, wherein,
the argument transformation unit allows the argument of the pixel value to change,
by rotating a complex vector of the pixel value using a rotation matrix, by the angle
corresponding to the change, represents the pixel value as a real part and an imaginary
part, and calculates the pixel value to be raised to the power of w by using a binomial
expansion, thereby multiplying the argument of the pixel value by w.
20. The magnetic resonance imaging apparatus according to claim 8, wherein,
the argument transformation unit allows the argument of the pixel value to change,
by rotating a complex vector of the pixel value using a rotation matrix, by the angle
corresponding to the change, represents the pixel value as a real part and an imaginary
part, and calculates the pixel value to be raised to the power of (w - 1) by using
a binomial expansion.
21. The magnetic resonance imaging apparatus according to claim 18, wherein,
the order of the binomial expansion is set to be not less than the fifth.